Braunstein Alfredo, Dall'Asta Luca, Semerjian Guilhem, Zdeborová Lenka
Department of Applied Science and Technology, Politecnico di Torino, Corso Duca degli Abruzzi 24, 10129 Turin, Italy.
Human Genetics Foundation, Via Nizza 52, 10126 Turin, Italy.
Proc Natl Acad Sci U S A. 2016 Nov 1;113(44):12368-12373. doi: 10.1073/pnas.1605083113. Epub 2016 Oct 18.
We study the network dismantling problem, which consists of determining a minimal set of vertices in which removal leaves the network broken into connected components of subextensive size. For a large class of random graphs, this problem is tightly connected to the decycling problem (the removal of vertices, leaving the graph acyclic). Exploiting this connection and recent works on epidemic spreading, we present precise predictions for the minimal size of a dismantling set in a large random graph with a prescribed (light-tailed) degree distribution. Building on the statistical mechanics perspective, we propose a three-stage Min-Sum algorithm for efficiently dismantling networks, including heavy-tailed ones for which the dismantling and decycling problems are not equivalent. We also provide additional insights into the dismantling problem, concluding that it is an intrinsically collective problem and that optimal dismantling sets cannot be viewed as a collection of individually well-performing nodes.
我们研究网络拆解问题,该问题包括确定一组最小的顶点,去除这些顶点会使网络分裂成规模小于扩展规模的连通分量。对于一大类随机图,这个问题与去环问题(去除顶点以使图无环)紧密相关。利用这种联系以及近期关于流行病传播的研究成果,我们给出了具有规定(轻尾)度分布的大型随机图中拆解集最小规模的精确预测。基于统计力学的观点,我们提出了一种三阶段最小和算法,用于高效地拆解网络,包括重尾网络,对于重尾网络,拆解问题和去环问题并不等价。我们还对拆解问题提供了更多见解,得出结论:它本质上是一个集体问题,最优拆解集不能被视为由各自表现良好的节点组成的集合。